A method of describing a periodontal disease state includes assigning severity diagnoses to portions of a dentition, where the severity diagnoses correspond to periodontal disease states, and assigning numeric values to the portions, where the numeric values correspond to the severity diagnoses. The method also includes obtaining a raw score based on the numeric values, and determining a disease score based on the raw score. The disease score corresponds to a periodontal disease state of the dentition.
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16. A machine-readable medium that stores executable instructions for use in describing a periodontal disease state, the instructions causing a machine to:
receive data to assign severity diagnoses for portions of a dentition, the severity diagnoses corresponding to periodontal disease states, the data including multiple inputs for each of a plurality of portions of a dentition;
assign numeric values to the portions, the numeric values corresponding to the severity diagnoses, wherein the numeric values corresponding to the severity diagnoses differ based on the number of dentulous portions of the dentition;
obtain a raw score based on the numeric values; and
determine a disease score based on the raw score, the disease score corresponding to a periodontal disease state of the dentition, wherein the disease score describes both the severity and the extent of periodontal disease in the dentition; and
output the disease score to a user.
28. A computer-implemented method of describing a periodontal disease state, comprising:
receiving multiple inputs for each of a plurality of portions of a dentition, the inputs being based on observations of periodontal tissues for each portion of the dentition;
assigning a severity diagnoses to the portions of the dentition, the severity diagnoses corresponding to periodontal disease states and being based on the received inputs based on the observations of the periodontal tissues;
assigning, using a computer system configured to calculate a raw score and determine a disease score using a look up table, numeric values to the portions of the dentition, the numeric values corresponding to the severity diagnoses;
calculating, using the computer system configured to calculate the raw score and determine the disease score using a look up table, the raw score based on the numeric values assigned to the portions of the dentition;
using the look up table to determine the disease score based on the raw score, the disease score corresponding to a periodontal disease state of the dentition and being based on the periodontal disease states of multiple different portions of the dentition; and
monitoring a change in the disease score over time, wherein the disease score increases and decreases based on therapeutic response.
26. A computer-implemented method of describing a periodontal disease state, comprising:
receiving a first input and a second input for each of a plurality of portions of a dentition, the first and second inputs being based on observations of periodontal tissues for each portion of the dentition;
assigning a severity diagnoses to each of the portions of the dentition, the severity diagnoses being based on the first and second inputs for the portion of the dentition where each combination of the first and second inputs is associated with a pre-determined severity diagnosis;
assigning, using a computer system configured to calculate a raw score and determine a disease score using a look up table, numeric values to the portions of the dentition, the numeric values corresponding to the severity diagnoses for each of the portions of the dentition;
calculating, using the computer system configured to calculate the raw score and determine the disease score using the look up table, the raw score based on the numeric values assigned to the portions of the dentition; and
using the look up table to determine the disease score based on the raw score, the disease score corresponding to a periodontal disease state of the dentition and being based on the periodontal disease states of multiple different portions of the dentition; and
providing the disease score to a user.
1. A computer-implemented method of describing a periodontal disease state, comprising:
receiving multiple inputs for each of a plurality of portions of a dentition, the inputs being based on observations of periodontal tissues for each portion of the dentition;
assigning a severity diagnoses to the portions of the dentition, the severity diagnoses corresponding to periodontal disease states and being based on the received inputs based on the observations of the periodontal tissues and a predetermined correlation between a combination of observations of the periodontal tissues and a severity diagnosis;
assigning, using a computer system configured to calculate a raw score and determine a disease score using a look up table, numeric values to the portions of the dentition, the numeric values corresponding to the severity diagnoses for each of the portions of the dentition, wherein the numeric values corresponding to the severity diagnoses differ based on the number of dentulous portions of the dentition;
calculating, using the computer system configured to calculate the raw score and determine the disease score using a look up table, the raw score based on the numeric values assigned to the portions of the dentition; and
using the look up table to determine the disease score based on the raw score, the disease score corresponding to a periodontal disease state of the dentition and being based on the periodontal disease states of multiple different portions of the dentition, wherein the disease score describes both the severity and the extent of periodontal disease in the dentition.
23. A computer-implemented method of describing a periodontal disease state, comprising:
receiving multiple inputs for each of a plurality of portions of a dentition, the multiple inputs comprising at least two factors associated with the patient's periodontal tissues, the at least two factors being selected from the group consisting of bleeding that occurs upon probing; tooth pocket depth, and radiographic bone distance from a cemento-enamel junction,
assigning a severity diagnoses to each of the portions of the dentition, the severity diagnoses corresponding to periodontal disease states and being based on the received inputs based on the observations of the periodontal tissues and a predetermined correlation between the inputs for the at least two observations of the periodontal tissues and a severity diagnosis;
assigning, using a computer system configured to calculate a raw score and determine a disease score using a look up table, numeric values to the portions of the dentition, the numeric values corresponding to the severity diagnoses for each of the portions of the dentition, wherein the numeric values corresponding to the severity diagnoses differ based on the number of dentulous portions of the dentition;
calculating, using the computer system configured to calculate the raw score and determine the disease score using a look up table, the raw score based on the numeric values assigned to the portions of the dentition by summing the numeric values for each of the portions of the dentition; and
using the look up table to determine the disease score based on the raw score, the disease score corresponding to a periodontal disease state of the dentition and being based on the periodontal disease states of multiple different portions of the dentition; providing the disease score to a user.
3. The method of
4. The method of
5. The method of
6. The method of
7. The method of
measuring the bleeding that occurs upon probing based on one point in each portion;
measuring tooth pocket depth based on one point in each portion; and
measuring radiographic bone distance from a cemento-enamel junction based on one point in each portion.
8. The method of
using the disease score to determine a premium for an insurance policy.
9. The method of
monitoring a change in the disease score over time; and
adjusting the premium in accordance with the change.
10. The method of
11. The method of
12. The method of
13. The method of
14. The method of
monitoring a change in the disease score over time, wherein the disease score increases and decreases based on therapeutic response.
15. The method of
17. The machine-readable medium of
18. The machine-readable medium of
19. The machine-readable medium of
20. The machine-readable medium of
21. The machine-readable medium of
use the disease score to determine a premium for an insurance policy.
22. The machine-readable medium of
monitor a change in the disease score over time; and
adjust the premium in accordance with the change.
24. The method of
25. The method of
27. The method of
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This application claims priority under 35 U.S.C. §119 to U.S. Provisional Patent Application Ser. No. 60/629,033, filed Nov. 18, 2004, and entitled “DESCRIBING A PERIODONTAL DISEASE STATE”, the entire contents of which are hereby incorporated by reference.
This patent application relates generally to a method of describing a periodontal disease state and, more particularly, to a method that describes the periodontal disease state numerically.
While several diseases can affect the periodontium, plaque associated periodontal diseases are by far the most commonly observed. These infectious diseases have been classified as gingivitis, chronic periodontitis, aggressive periodontitis, periodontitis associated with systemic disease, necrotizing periodontitis, periodontal abscess, and periodontic-endodontic lesions. Gingivitis and chronic and aggressive periodontitis comprise, by far, the most commonly observed periodontal conditions.
Periodontal diseases are classified, and a diagnosis is made, based on a comprehensive periodontal examination. Factors upon which these decisions are made include dental and medical histories, assessment of gingival inflammation (e.g., bleeding on probing), probing pocket depth, extent and pattern of alveolar bone loss, and presence or absence of signs and symptoms including pain, ulceration, and amount of observable plaque and calculus.
The traditional periodontal diagnoses (e.g., the text-linguistic diagnoses in
Described herein is a method to quantify periodontal disease states using a numeric scale of 1 to 100. The method is based on a combination of sextant diagnoses determined by pocket depth, alveolar bone loss and bleeding on probing using mathematic theory and periodontal principles. The numeric score is, generally speaking, more readily understandable and more useful than the traditional text nomenclature. Furthermore, the use of a numeric periodontal disease score provides a clinician with a more precise assessment and expression of periodontal status and changes in status over time. In addition, use of the score may improve patient involvement in their care and treatment decisions formulated by their dentist, resulting in better health care outcomes.
In some embodiments, a method of describing a periodontal disease state includes assigning severity diagnoses to portions of a dentition, the severity diagnoses corresponding to periodontal disease states and assigning numeric values to the portions, the numeric values corresponding to the severity diagnoses. The method also includes obtaining a raw score based on the numeric values and determining a disease score based on the raw score. The disease score corresponds to a periodontal disease state of the dentition.
Embodiments can include one or more of the following.
Obtaining the raw score can include summing the numeric values. Determining the disease score can include correlating the raw score to the disease score. The portions can include sextants of the dentition. The severity diagnoses can include one or more of healthy, gingivitis, mild periodontitis, moderate periodontitis, and severe periodontitis. The severity diagnoses can be determined based on bleeding that occurs upon probing in the portion, tooth pocket depth in the portion, and radiographic bone distance from a cemento-enamel junction in the portion.
The method can also include measuring the bleeding that occurs upon probing based on one point in the dentition, measuring tooth pocket depth based on six points in the dentition, and measuring radiographic bone distance from a cemento-enamel junction based on six points in the portion. The method can also include using the disease score to determine a premium for an insurance policy. The method can also include monitoring a change in the disease score over time and adjusting the premium in accordance with the change. The disease score can include a numeric value in a range of 1 to 100.
In some embodiments, a machine-readable medium can store executable instructions for use in describing a periodontal disease state. The instructions can be capable of causing a machine to receive severity diagnoses for portions of a dentition, the severity diagnoses corresponding to periodontal disease states, assign numeric values to the portions, the numeric values corresponding to the severity diagnoses, obtain a raw score based on the numeric values, and determine a disease score based on the raw score, the disease score corresponding to a periodontal disease state of the dentition.
Embodiments can include one or more of the following.
The instructions for obtaining the raw score can include instructions for summing the numeric values. The instructions for determining the disease score can include instructions for correlating the raw score to the disease score. The portions can include sextants of the dentition. The severity diagnoses can include one or more of healthy, gingivitis, mild periodontitis, moderate periodontitis, and severe periodontitis. The severity diagnoses can be determined based on bleeding that occurs upon probing in the portion, tooth pocket depth in the portion, and radiographic bone distance from a cemento-enamel junction in the portion.
The machine-readable medium can also include instructions to use the disease score to determine a premium for an insurance policy. The machine-readable medium can also include instructions to monitor a change in the disease score over time and adjust the premium in accordance with the change. The disease score can be a numeric value in a range of 1 to 100.
Other features and advantages described herein will be apparent from the description, the drawings, and the claims.
Like reference numerals in different figures indicate like elements.
Referring to
As shown in
A periodontal diagnosis requires the correlation of individual tooth diagnoses. The groupings of individual tooth diagnoses constitute the realm of permutations and combinations. A permutation is the term used to describe possible groupings where the order is important. Permutations of diagnoses for teeth is the number of different severity diagnosis for each tooth listed in the sequence of tooth #1, 2, 3, . . . 32. Regardless of the ease or complexity of determining the severity of disease for a single tooth, there is a need for a method to aggregate and correlate the full spectrum of possible combinations of disease severity for a 28-tooth dentition. This need is not surprising since a 28-tooth dentition has 528 or 3.7×1019 permutations and 35,960 combinations of possible disease states using 5 severity types (health, gingivitis, and mild, moderate, and severe periodontitis) for each tooth. Combinations, which differ from permutations by eliminating the requirement of order (e.g., number of teeth with severe, moderate, and mild periodontitis, gingivitis, and health) reduces the number to 35,960 combinations. This number is still too large for a practical application.
To facilitate practical clinical usability, the method described herein (referred to henceforth as “the numeric method”) uses the sextant of a dentition as the unit of measure to calculate a periodontal disease state that accurately describes disease severity and extent. Sextants, have 56 or 15,625 permutations and 210 combinations. The former includes too many variations for practical use but the latter is usable. For the patient with 5, 4, 3, 2, or 1 dentulous sextants the number of possible sextant disease severity combinations would be 126, 70, 35, 15, and 5, respectively.
Thus, the sextant of a dentition is used as the unit of measure because the sextant is the smallest unit that is practical for routine clinical dentistry based on the number of permutations and combinations.
Referring back to
As shown in
Referring to
As described above, one step in calculating the disease score is assigning 132 a severity diagnosis to each sextant based on observations of the periodontal tissues in the sextant. Observations of the periodontal tissues include bleeding on probing, deepest pocket, and greatest radiographic bone height distance from the cemento-enamel junction (CEJ). Referring to
As shown in
The dental professional uses the combination of an observed bone height distance 154 and pocket depth 152 to determine the disease state for the sextant. For example, if the dental professional measures a bone height distance of 3 mm and a pocket depth of 8 mm, based on chart 150, the disease state for the sextant would be severe periodontitis.
Referring back to
Referring to
Referring to
In another example, row 230 shows the calculation of a raw score 224 for a dentition having five dentulous sextants. Table 180 shown in
Rows 232, 234, and 236 provide examples of the calculation of raw scores for dentitions having four, three, and two dentulous sextants respectively.
Referring back to
For example, referring back to the example shown in row 228 of
The numeric method is sufficiently robust to accommodate every number of dentulous sextants that a patient can present. In addition to the fully dentulous condition, Table 210 shown in
The numeric method is a simple yet powerful way to describe a patient's current periodontal disease state. The information contained in a 100-point numeric scale is more descriptive than current text usage by a factor of six. By virtue of being numeric, changes in a patient's health state can be expressed, visually graphed, and understood readily. With the numeric method, an average of two or fewer combinations of sextant severity diagnoses correspond to one disease score making reasonably small changes detectable. This information can serve to guide future treatment decisions, as ineffective treatment would be identified by a higher disease score and effective treatment by a lower disease score. Such information would be valuable for an individual patient or a population of patients.
A patient who lacks understandable information about their current disease state cannot participate effectively in his or her own disease prevention and health improvement. It is believed that by quantifying the individual's periodontal condition in an objective and repeatable manner can provide various advantages. For example, the numeric method can create an environment in which the results of therapeutic interventions can be identified in terms of their success in improving health. The numeric method can also provide feedback to a patient that encourages and supports the patient's involvement in their own health care and the effect their own activities can have on their quality of life.
It is also believed that the numeric method is advantageous due to the limited data needed to determine the disease score. Only thirteen data points are used to calculate the disease score: six (one per sextant) for pocket depth, six (one per sextant) for bone height, and one for bleeding on probing. This is a small subset of the observations routinely documented in a clinical setting, thereby simplifying the utilization of the numeric method. The disease score is not intended to be a substitute for a comprehensive periodontal examination including the traditional periodontal charting, but is intended to supplement it by summarizing this information to increase its utility.
Additionally periodontal treatment is planned and implemented and insurance benefits determined by sextants or quadrants, not teeth. A 100-point scale is used because it is an established and easily understood means of measurement, although other scales may be used. Furthermore, correlating combinations to this scale is workable when the sextant is used as the unit of measure. Six sextants require compressing the 210 combinations by a factor of 2.1 to 1 for the 100-point scale. Five sextants require a compression of 1.26 to 1 and only some of the 100 disease scores are utilized when the number of sextants is less than five.
The numeric method satisfies the requirement that each raw score uniquely identify a distinct severity-extent combination. While large, the raw sextant numeric values shown in
An exemplary uniform scoring system for five severity-extent categories would be 1-20 for health, 21-40 for gingivitis, 41-60 for mild periodontitis, 61-80 for moderate periodontitis, and 81-100 for severe periodontitis. The non-uniformity of score distribution in the numeric method occurs as a condition of the combination process in which the sextant with the most advanced disease severity is used for categorization. This creates 64 combinations where one or more sextants have severe periodontitis, 26 combinations where no sextant has severe periodontitis and one or more has moderate periodontitis, seven combinations where no sextant has severe or moderate periodontitis and one or more has mild periodontitis, and so forth concluding with two combinations for the gingivitis category and only one for health.
The numeric method establishes consistency of disease scores regardless of the number of teeth or dentulous sextants. This means that two patients, one with only lower teeth and the other with 28 teeth, could share a disease score of 7 that would accurately describe a similar condition. The former would have one sextant with mild periodontitis and two with gingivitis whereas the latter would have two sextants with mild periodontitis and four with gingivitis. In each case, one third of the dentulous sextants have mild periodontitis and two-thirds gingivitis.
The assignment of a severity diagnosis described in
As shown in
The disease score, or a change therein, can be of considerable value to a dentist and patient in determining whether and when to initiate periodontal care and specific treatment recommendations. High scores would indicate a need for more treatment, whereas low scores would indicate a need for less treatment. An increase in the disease score may indicate that more or different treatment is needed. A decrease in the disease score may indicate that the selected treatment was effective. Changes in the disease scores over time reveal effectiveness of treatment and provide a powerful method to continually and dynamically select the best treatment. Referral guidelines can be established using the current disease score and historical increases.
As shown in
As shown in
In some embodiments, a risk score can be used to further enhance periodontal diagnosis, treatment planning and communicating this information to the patient. The use of a disease score and risk score may improve patient involvement in their care and treatment decisions formulated by their dentist resulting in better health care outcomes. A risk score, and method for determining the risk score, is described in U.S. Pat. No. 6,484,144, the contents of which are incorporated by reference into the subject application as if set forth herein in full. In general, the risk score is a predictive measure of the likelihood that the severity and extent of the disease will worsen.
As shown in
As shown in
As shown in
In general, the disease score simplifies and standardizes clinical documentation that summarizes a patient's periodontal disease state. The disease score could be used to justify treatment to third party payers, such as insurance companies, which would relieve dental staff from duplicating and submitting periodontal charting and radiographs, and which would relieve insurance personnel from managing disparate dental records.
In this regard, current health insurance policy underwriting procedures are frequently based on actuarial population data. Individuals of the same gender within broad age groups, and absent previously identified health problems, will receive essentially the same premium cost. The assignment of a mathematically derived individual health score to members of an insured group will allow far greater precision in differentiating the probable cost of care for individuals within the group. As a consequence, the use of the numeric method allows more efficient pricing of premiums for health care, with greater benefits available to individuals with greater disease scores, while still providing lower but still appropriate benefit levels for individuals with lower disease scores.
The numeric method also makes possible a quantification of changes in disease states for a population. For example, an average disease score of 28 on a 100 point scale represents a definable average level of disease within a group. If this score moves towards health as a result of care provided under the health insurance policy, the degree of improvement can be quantified, group premiums can be adjusted, and the improved health state accurately communicated to employer-payers of the insurance policy.
The numeric method is not limited in terms of use with computer hardware and/or software; it may find applicability in any computing or processing environment and with any type of machine that is capable of running machine-readable instructions. The numeric method can be implemented in conjunction with digital electronic circuitry, or in computer hardware, firmware, software, or in combinations thereof.
The numeric method can be implemented, at least in part, via a computer program product, i.e., a computer program tangibly embodied in an information carrier, e.g., in a machine-readable storage device or in a propagated signal, for execution by, or to control the operation of, data processing apparatus, e.g., a programmable processor, a computer, or multiple computers. A computer program can be written in any form of programming language, including compiled or interpreted languages, and it can be deployed in any form, including as a stand-alone program or as a module, component, subroutine, or other unit suitable for use in a computing environment. A computer program can be deployed to be executed on one computer or on multiple computers at one site or distributed across multiple sites and interconnected by a communication network.
Method steps associated with the numeric method can be performed by one or more programmable processors executing one or more computer programs to perform the functions of the numeric method. The method steps can also be performed by, and the numeric method can be implemented as, special purpose logic circuitry, e.g., an FPGA (field programmable gate array) and/or an ASIC (application-specific integrated circuit).
Processors suitable for the execution of a computer program include, by way of example, both general and special purpose microprocessors, and any one or more processors of any kind of digital computer. Generally, a processor will receive instructions and data from a read-only memory or a random access memory or both. Elements of a computer include a processor for executing instructions and one or more memory devices for storing instructions and data. Generally, a computer will also include, or be operatively coupled to receive data from, or transfer data to, or both, one or more mass storage devices for storing data, e.g., magnetic, magneto-optical disks, or optical disks. Information carriers suitable for embodying computer program instructions and data include all forms of non-volatile memory, including by way of example, semiconductor memory devices, e.g., EPROM, EEPROM, and flash memory devices; magnetic disks, e.g., internal hard disks or removable disks; magneto-optical disks; and CD-ROM and DVD-ROM disks.
The numeric method can be implemented in a computing system that includes a back-end component, e.g., as a data server, or that includes a middleware component, e.g., an application server, or that includes a front-end component, e.g., a client computer having a graphical user interface or a Web browser through which a user can interact with an implementation of the numeric method, or any combination of such back-end, middleware, or front-end components. The components of the system can be interconnected by any form or medium of digital data communication, e.g., a communication network. Examples of communication networks include a LAN and a WAN, e.g., the Internet.
Method steps associated with the numeric method can be rearranged and/or one or more such steps can be omitted to achieve the same, or similar, results to those described herein. The numeric method may be fully automated, meaning that it operate without user intervention, or interactive, meaning that all or part of the numeric method may include some user intervention.
Elements of different embodiments described herein may be combined to form other embodiments not specifically set forth above. Other embodiments not specifically described herein are also within the scope of the following claims.
Martin, John A., Loeb, Carl F., Page, Roy C.
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